Network structure of UEFA Champions League teams: association with classical notational variables and variance between different levels of success

Author:

Clemente F. M.12,Martins F. M. L.23

Affiliation:

1. Instituto Politécnico de Viana do Castelo , Escola Superior de Desporto e Lazer , Portugal

2. Instituto de Telecomunicações , Delegação da Covilhã , Portugal

3. Instituto Politécnico de Coimbra, Escola Superior de Educação , Departamento de Educação , IIA, RoboCorp, UNICID, Portugal

Abstract

Abstract The aim of this study was to analyse the general properties of the network of elite football teams that participated in UEFA Champions League 2015–2016. Analysis of variance of the general network measures between performances in competition was made. Moreover, the association between performance variables (goals, shots, and percentage of ball possession) and general network measures also was tested. The best sixteen teams that participated in UEFA Champions League 2015–2016 were analysed in a total of 109 official matches. Statistically significant differences between maximum stages in competition were found in total links (p = 0.003; ES = 0.087), network density (p = 0.003; ES = 0.088), and clustering coefficient (p = 0.007; ES = 0.078). Total links (r = 0.439; p = 0.001), network density (r = 0.433; p = 0.001) and clustering coefficient (r = 0.367; p = 0.001) had a moderate positive correlations with percentage of ball possession. This study revealed that teams that achieved the quarterfinals and finals had greater values of general network measures than the remaining teams, thus suggesting that higher values of homogeneity in network process may improve the success of the teams. Moderate correlations were found between ball possession and the general network measures suggesting that teams with more capacity to perform longer passing sequences may involve more players in a more homogeneity manner.

Publisher

Walter de Gruyter GmbH

Subject

Biomedical Engineering,General Computer Science

Reference33 articles.

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